Convolutional Neural Network Approach for the Detection of Lung Cancers in Chest X-Ray Images

Author(s):  
D. A. A. Deepal ◽  
T. G. I. Fernando
Author(s):  
Tapan K. Das ◽  
Chiranji Lal Chowdhary ◽  
X.Z. Gao

Though India being home of one out of every six people in the globe, is facing an arduous task of providing healthcare service, especially to the large number of patients in remote areas due to lack of diagnosis support systems and doctors. It is reported that hospitals in rural areas have an insufficient radiologist due to which thousands of cases are usually handled by single doctor. In this context, we aim to develop an AI based computer-aided diagnosis tool, which can classify abnormalities by reading chest X-ray so that it could assist the doctors in arriving at quick diagnosis. We have employed a Convolutional Neural Network (CNN) designed by Google known as XceptionNet to detect those pathologies in ChestX-ray14 data. Further, same data is being used for executing other CNN- ResNet. Finally, both the results obtained are compared to assess the superior CNN model for X-ray level diagnosis.


2020 ◽  
Vol 52 (12) ◽  
pp. 590-601
Author(s):  
Emrah Irmak

In this paper, two novel, powerful, and robust convolutional neural network (CNN) architectures are designed and proposed for two different classification tasks using publicly available data sets. The first architecture is able to decide whether a given chest X-ray image of a patient contains COVID-19 or not with 98.92% average accuracy. The second CNN architecture is able to divide a given chest X-ray image of a patient into three classes (COVID-19 versus normal versus pneumonia) with 98.27% average accuracy. The hyperparameters of both CNN models are automatically determined using Grid Search. Experimental results on large clinical data sets show the effectiveness of the proposed architectures and demonstrate that the proposed algorithms can overcome the disadvantages mentioned above. Moreover, the proposed CNN models are fully automatic in terms of not requiring the extraction of diseased tissue, which is a great improvement of available automatic methods in the literature. To the best of the author’s knowledge, this study is the first study to detect COVID-19 disease from given chest X-ray images, using CNN, whose hyperparameters are automatically determined by the Grid Search. Another important contribution of this study is that it is the first CNN-based COVID-19 chest X-ray image classification study that uses the largest possible clinical data set. A total of 1,524 COVID-19, 1,527 pneumonia, and 1524 normal X-ray images are collected. It is aimed to collect the largest number of COVID-19 X-ray images that exist in the literature until the writing of this research paper.


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